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Neural Network Comparison for Paint Errors Classification for Automotive Industry in Compliance with Industry 4.0 Concept

机译:符合行业4.0概念汽车产业涂料误差分类的神经网络比较

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The proposed paper focuses on utilization of neural networks for paint errors classification in the area of automotive industry. The paper utilizes hypothesis, that outdoor weather has significant impact on the number of paint errors, as a basis for comparison of neural network algorithms. For the neural network algorithms comparison we used real production data from the paint shop process. The paper deals also with definition of classification classes and attributes selection, as well as the data integration process itself that utilizes Hadoop platform as an intermediate data storage.
机译:该拟议文件侧重于利用神经网络在汽车工业领域的涂料错误分类。本文利用假设,即室外天气对涂料误差的数量产生重大影响,作为神经网络算法比较的基础。对于神经网络算法比较,我们使用来自油漆店的实际生产数据。本文还具有分类类和属性选择的定义,以及利用Hadoop平台作为中间数据存储的数据集成过程本身。

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